DocumentCode
2966392
Title
Efficient learning of standard finite normal mixtures for image quantification
Author
Yue Wang ; Adali, Tülay
Author_Institution
Dept. of Radiol., Georgetown Univ. Hospital, Washington, DC, USA
Volume
6
fYear
1996
fDate
7-10 May 1996
Firstpage
3422
Abstract
This paper presents an efficient on-line distribution learning procedure of standard finite normal mixtures for image quantification. Based on the standard finite normal mixture (SFNM) model, we formulate image quantification as a distribution learning problem, and derive the probabilistic self-organizing map (PSOM) algorithm by minimizing the relative entropy between the SFNM distribution and the image histogram. We justify our formulation and hence provide a basis for the use of SFNM, in pixel image modeling in terms of large sample properties of the maximum likelihood estimator. We then establish convergence properties of the PSOM which simulates a Bayesian rule network structure with Gaussian activation functions forming soft splits of the data, and thus providing unbiased estimates. It is shown that by incorporating learning rate adaptation in a sequential mode, PSOM achieves fast convergence and has efficient learning capabilities which make it very attractive for many practical image quantification applications; such as unsupervised image segmentation and diagnosis by medical images
Keywords
Bayes methods; convergence of numerical methods; image processing; maximum likelihood estimation; minimum entropy methods; self-organising feature maps; unsupervised learning; Bayesian rule network structure; Gaussian activation functions; PSOM algorithm; SFNM mode; convergence properties; distribution learning problem; efficient on-line distribution learning procedure; image histogram; image quantification; large sample properties; learning rate adaptation; maximum likelihood estimator; medical image diagnosis; pixel image modeling; probabilistic self-organizing map algorithm; relative entropy; sequential model; soft split; standard finite normal mixture model; standard finite normal mixtures; unsupervised image segmentation; Biomedical imaging; Brain; Computer science; Convergence; Entropy; Histograms; Medical diagnostic imaging; Pathology; Pixel; Radiology;
fLanguage
English
Publisher
ieee
Conference_Titel
Acoustics, Speech, and Signal Processing, 1996. ICASSP-96. Conference Proceedings., 1996 IEEE International Conference on
Conference_Location
Atlanta, GA
ISSN
1520-6149
Print_ISBN
0-7803-3192-3
Type
conf
DOI
10.1109/ICASSP.1996.550613
Filename
550613
Link To Document